TY - JOUR
T1 - Identification of boreal forest stands with high herbaceous plant diversity using airborne laser scanning
AU - Vehmas, Mikko
AU - Eerikäinen, Kalle
AU - Peuhkurinen, Jussi
AU - Packalén, Petteri
AU - Maltamo, Matti
N1 - Funding Information:
This research was conducted in the Faculty of Forestry, University of Joensuu, and the Joensuu Research Unit of the Finnish Forest Research Institute. It was partly funded by Maj &Tor Nessling foundation and the Finnish Ministry of the Environment through the project “A monitoring system based on modern remote sensing imagery for natural forests and restored forests in conservation areas” (decision no. YM89/5512/2004). We are grateful to these institutions for resources and funding.
PY - 2009/1/20
Y1 - 2009/1/20
N2 - Boreal forest stands with high herbaceous plant species diversity have been found to be one of the main habitats for many endangered species, but the locations and sizes of these herb-rich forest stands are not well known in many areas. Better identification of the stands could improve both their conservation and management. A new approach is proposed here for locating the mature herb-rich forest stands using airborne laser scanner (ALS) data and logistic regression, or the k-NN classifier. We show that ALS technology is capable of distinguishing the ecologically important herb-rich forests from those growing on less fertile site types, mainly on the basis of unique but quantifiable crown structure and vertical profile that characterise forests on high fertility sites. The study site, Koli National Park, is located on the border of the southern and middle boreal vegetation zones in Finland, and includes 63 herb-rich forest stands of varying sizes. The model and test data comprised 274 forest stands belonging to five forest site types varying from very fertile to poor. The best overall classification accuracy achieved with the k-NN method was 88.9%, the herb-rich forests being classified correctly in 65.0% of cases and the other forest site types in 95.7%. The best overall classification accuracy achieved with logistic regression was 85.6%, being 55.0% for the herb-rich forests and 94.3% for the other forest site types. Both methods demonstrated promising potential for separating herb-rich forests from other forest site types, although slightly better results were obtained with the non-parametric k-NN method, which was capable of utilising a higher number of explanatory variables. It is concluded that ALS-based data analysis techniques are applicable to the detection of mature boreal herb-rich forests in large-scale forest inventories.
AB - Boreal forest stands with high herbaceous plant species diversity have been found to be one of the main habitats for many endangered species, but the locations and sizes of these herb-rich forest stands are not well known in many areas. Better identification of the stands could improve both their conservation and management. A new approach is proposed here for locating the mature herb-rich forest stands using airborne laser scanner (ALS) data and logistic regression, or the k-NN classifier. We show that ALS technology is capable of distinguishing the ecologically important herb-rich forests from those growing on less fertile site types, mainly on the basis of unique but quantifiable crown structure and vertical profile that characterise forests on high fertility sites. The study site, Koli National Park, is located on the border of the southern and middle boreal vegetation zones in Finland, and includes 63 herb-rich forest stands of varying sizes. The model and test data comprised 274 forest stands belonging to five forest site types varying from very fertile to poor. The best overall classification accuracy achieved with the k-NN method was 88.9%, the herb-rich forests being classified correctly in 65.0% of cases and the other forest site types in 95.7%. The best overall classification accuracy achieved with logistic regression was 85.6%, being 55.0% for the herb-rich forests and 94.3% for the other forest site types. Both methods demonstrated promising potential for separating herb-rich forests from other forest site types, although slightly better results were obtained with the non-parametric k-NN method, which was capable of utilising a higher number of explanatory variables. It is concluded that ALS-based data analysis techniques are applicable to the detection of mature boreal herb-rich forests in large-scale forest inventories.
KW - Boreal forest
KW - Fennoscandian herb-rich forests
KW - Finland
KW - Forest classification
KW - Forest inventory
KW - Herbaceous plant species diversity
KW - Remote sensing
UR - http://www.scopus.com/inward/record.url?scp=56449113386&partnerID=8YFLogxK
U2 - 10.1016/j.foreco.2008.08.016
DO - 10.1016/j.foreco.2008.08.016
M3 - Article
AN - SCOPUS:56449113386
SN - 0378-1127
VL - 257
SP - 46
EP - 53
JO - Forest Ecology and Management
JF - Forest Ecology and Management
IS - 1
ER -